Back to Supervised Machine Learning: Regression
IBM

Supervised Machine Learning: Regression

This course introduces you to one of the main types of modelling families of supervised Machine Learning: Regression. You will learn how to train regression models to predict continuous outcomes and how to use error metrics to compare across different models. This course also walks you through best practices, including train and test splits, and regularization techniques. By the end of this course you should be able to: Differentiate uses and applications of classification and regression in the context of supervised machine learning  Describe and use linear regression models Use a variety of error metrics to compare and select a linear regression model that best suits your data Articulate why regularization may help prevent overfitting Use regularization regressions: Ridge, LASSO, and Elastic net   Who should take this course? This course targets aspiring data scientists interested in acquiring hands-on experience  with Supervised Machine Learning Regression techniques in a business setting.   What skills should you have? To make the most out of this course, you should have familiarity with programming on a Python development environment, as well as fundamental understanding of Data Cleaning, Exploratory Data Analysis, Calculus, Linear Algebra, Probability, and Statistics.

Status: Regression Analysis
Status: Model Evaluation
IntermediateCourse20 hours

Featured reviews

AF

5.0Reviewed Nov 6, 2020

Great course and very well structured. I'm really impressed with the instructor who give thorough walkthrough to the code.

NV

5.0Reviewed Nov 15, 2020

Very well designed course, great that we could work with our own data and apply the theory. Looking forward to continue the journey.

AJ

4.0Reviewed Aug 17, 2024

It's a nice course it deserve a 5/5 but some common and better regression algorithm like Decision Trees and Random Forest were not taught unlike the Classification part. Thanks

ML

5.0Reviewed Sep 30, 2021

very detailed. However, it is better if the gradient decent has its lesson.

MM

5.0Reviewed Sep 21, 2022

T​his course is very helpful. The wonderfull part in this course was the final course project in which I had to create my own linear regression model by adding polynimial features and regularization.

VO

5.0Reviewed Apr 9, 2021

Very well presented. This is without doubt the best series for Machine Learning on Coursera.

NA

5.0Reviewed Dec 27, 2020

Learned really about supervised learning and more importantly regularization and some available methods.

RM

4.0Reviewed Oct 13, 2025

sebaiknya disediakan audio dengan bahasa indonesia agar lebih jelas dipahami

WM

5.0Reviewed Jun 5, 2021

best course ever I learned regression and polynomials in a professional way.thank you

MK

5.0Reviewed Aug 11, 2022

It was a great learning experience with in-depth knowledge and practice-based demos helped me to understand the concepts easily.

RP

5.0Reviewed Apr 12, 2021

I recommend this course to everyone who wants to excel in Machine Learning. This is a Great Course!

SP

5.0Reviewed Aug 10, 2021

Well structured course. Concepts are explained clearly with hands on exercises.

All reviews

Showing: 20 of 161

Weishi Wang
1.0
Reviewed Feb 6, 2022
Christopher Welch
5.0
Reviewed Jan 25, 2021
Nick Verwaal
5.0
Reviewed Nov 16, 2020
Abdillah Fikri
5.0
Reviewed Nov 7, 2020
Kalliope Stournaras
3.0
Reviewed Jun 24, 2021
mohamed mahmoud
1.0
Reviewed Sep 28, 2023
Aldo Heredia
1.0
Reviewed Mar 6, 2024
Nandana Amarasinghe
5.0
Reviewed Dec 28, 2020
Ranjith Panicker
5.0
Reviewed Apr 13, 2021
Minh Lê
5.0
Reviewed Sep 30, 2021
Nir Chechik
5.0
Reviewed Oct 8, 2021
Nancy Castilla
4.0
Reviewed Apr 24, 2021
michiel baltussen
4.0
Reviewed Feb 15, 2021
Ronald Benz Medina Zhang
3.0
Reviewed Apr 21, 2023
John C. Bertinetti
3.0
Reviewed Jan 3, 2023
Ramesh Baskaran
3.0
Reviewed Jan 30, 2021
Eduardo Palomero López
2.0
Reviewed Jul 19, 2022
Julian Uribe Castaneda
1.0
Reviewed Apr 9, 2023
Sathish
5.0
Reviewed Feb 25, 2026
S. Hossein Motaharpour
5.0
Reviewed Jan 5, 2023